基于社会信息检索的面罩检测高效网络- b0模型

Moolchand Sharma, Harsh Gunwant, Pranay Saggar, Luv Gupta, Deepak Gupta
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引用次数: 1

摘要

2019年底,世界上出现了冠状病毒这个词,此后每个人都陷入了压力和焦虑之中。这一流行病是一场彻底的灾难,在世界各地造成破坏,造成大量人命损失。各国政府已经发布了指导方针和协议,以防止病例激增(即戴口罩)。在这一片混乱中,唯一的武器就是科技。因此,检测口罩很重要。作者使用了一个数据集,其中包括社会中戴口罩和不戴口罩的个人图像。他们通过使用像EfficientNetB0、MobileNetV2、ResNet50和InceptionV3这样的深度网络来收集训练模型所需的信息。使用EfficientNet-B0,他们已经能够在两类分类问题上达到99.70%的准确率。这些方法使口罩检测更容易,并有助于知识发现。这些技术突破可能有助于信息检索,并帮助社会,并保证这样的医疗灾难不会再次发生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EfficientNet-B0 Model for Face Mask Detection Based on Social Information Retrieval
The world was introduced to the term coronavirus at the end of 2019, following which everyone was thrown into stress and anxiety. The pandemic has been a complete disaster, wreaking devastation and resulting in a significant loss of human life throughout the world. The governments of various countries have issued guidelines and protocols to be followed for stopping the surge in cases (i.e., wearing masks). Amidst all this chaos, the only weapon is technology. So, the detection of face masks is important. The authors utilized a dataset that included images of individuals in society wearing and not wearing masks. They gathered the information required to train a model by using deep networks like EfficientNetB0, MobileNetV2, ResNet50, and InceptionV3. With EfficientNet-B0, they have been able to achieve an accuracy of 99.70% on a two-class classification issue. These methods make face mask detection easier and help in knowledge discovery. These technological breakthroughs may aid in information retrieval as well as help society and guarantee that such a healthcare disaster does not occur again.
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